Convolutional Feature Noise Reduction for 2D Cardiac MR Image Segmentation

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Abstract

The article's full content could not be accessed from the provided arXiv link (https://arxiv.org/pdf/2511.22983.pdf). Consequently, a comprehensive summary detailing its specific purpose, the methodologies employed, and the conclusions drawn cannot be accurately generated. This limitation prevents the extraction of key experimental findings and their implications, which are typically core to the abstract. Therefore, a meaningful summary based on the article's text is unattainable.

Keywords

Cardiac MR, Image Segmentation, Noise Reduction, Convolutional Neural Networks, Content Inaccessible


1. Introduction

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2. Related Work

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3. Methodology

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4. Experimental Results

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5. Discussion

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